The generation planning and investment problem in restructured industry is to determine what, when, where and how to install generating units to supply electricity to the power system, while satisfying various constraints imposed by load forecast, reliability and other operating conditions, in order to maximize investors' profits and minimize the investing risks. Mathematically, a GP problem can be expressed as a large-scale, nonlinear, mixinteger stochastic optimization problem with the objective of maximizing the profit and minimizing the risk, subject to a set of complicated constraints of load demand and supplying reliability. It is a challenging problem due to the combination of non-Iinearity, combinatorial and randomness. Traditional ...
This paper presents a methodology based on genetic Algorithms (GA) to solve the problem of optimal p...
Electric power systems around the world are changing in terms of structure, operation, management an...
The main goal of this paper was to find an optimal nature inspired model, which will simulate on t...
The modern heuristic techniques mainly include the application of the artificial intelligence approa...
At the present time the generation expansion planning (GEP) has become a problem very difficult to s...
Power system planning, control and operation require an adequate use of existing resources as to inc...
The paper discusses the planning of hydroelectric power generation. A stochastic optimization proced...
New Artificial Intelligence (AI) approaches such as simulated annealing, genetic algorithms, simulat...
Three related methods are presented for determining the least-cost generating capacity investments r...
Including distributed generation (DG) in distribution systems often requires in-depth analysis and p...
This paper presents the applications of computational intelligence techniques to economic load dispa...
This paper derives a mathematical structure for investment decisions of a profit-maximising and stra...
This paper presents a methodology based on genetic Algorithms (GA) to solve the problem of optimal p...
This paper presents an application of Improved Genetic Algorithm (IGA) with the support of Optimal P...
Well established conventional algorithms are available for solving the optimum power flow (OPF) prob...
This paper presents a methodology based on genetic Algorithms (GA) to solve the problem of optimal p...
Electric power systems around the world are changing in terms of structure, operation, management an...
The main goal of this paper was to find an optimal nature inspired model, which will simulate on t...
The modern heuristic techniques mainly include the application of the artificial intelligence approa...
At the present time the generation expansion planning (GEP) has become a problem very difficult to s...
Power system planning, control and operation require an adequate use of existing resources as to inc...
The paper discusses the planning of hydroelectric power generation. A stochastic optimization proced...
New Artificial Intelligence (AI) approaches such as simulated annealing, genetic algorithms, simulat...
Three related methods are presented for determining the least-cost generating capacity investments r...
Including distributed generation (DG) in distribution systems often requires in-depth analysis and p...
This paper presents the applications of computational intelligence techniques to economic load dispa...
This paper derives a mathematical structure for investment decisions of a profit-maximising and stra...
This paper presents a methodology based on genetic Algorithms (GA) to solve the problem of optimal p...
This paper presents an application of Improved Genetic Algorithm (IGA) with the support of Optimal P...
Well established conventional algorithms are available for solving the optimum power flow (OPF) prob...
This paper presents a methodology based on genetic Algorithms (GA) to solve the problem of optimal p...
Electric power systems around the world are changing in terms of structure, operation, management an...
The main goal of this paper was to find an optimal nature inspired model, which will simulate on t...